4.7 Review

Studying Cellular Signal Transduction with OMIC Technologies

Journal

JOURNAL OF MOLECULAR BIOLOGY
Volume 427, Issue 21, Pages 3416-3440

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jmb.2015.07.021

Keywords

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Funding

  1. Massachusetts Institute of Technology Center for Cell Decision Processes [GM68762]
  2. Massachusetts Institute of Technology Integrative Cancer Biology Program [CA112967]
  3. National Cancer Institute [T32 CA130807]
  4. Natural Sciences and Engineering Research Council of Canada
  5. Richard and Susan Smith Family Foundation
  6. Breast Cancer Alliance

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In the gulf between genotype and phenotype exists proteins and, in particular, protein signal transduction systems. These systems use a relatively limited parts list to respond to a much longer list of extracellular, environmental, and/or mechanical cues with rapidity and specificity. Most signaling networks function in a highly non-linear and often contextual manner. Furthermore, these processes occur dynamically across space and time. Because of these complexities, systems and OMIC approaches are essential for the study of signal transduction. One challenge in using OMIC-scale approaches to study signaling is that the signal can take different forms in different situations. Signals are encoded in diverse ways such as protein protein interactions, enzyme activities, localizations, or post-translational modifications to proteins. Furthermore, in some cases, signals may be encoded only in the dynamics, duration, or rates of change of these features. Accordingly, systems-level analyses of signaling may need to integrate multiple experimental and/or computational approaches. As the field has progressed, the non-triviality of integrating experimental and computational analyses has become apparent. Successful use of OMIC methods to study signaling will require the right experiments and the right modeling approaches, and it is critical to consider both in the design phase of the project. In this review, we discuss common OMIC and modeling approaches for studying signaling, emphasizing the philosophical and practical considerations for effectively merging these two types of approaches to maximize the probability of obtaining reliable and novel insights into signaling biology. (C) 2015 Elsevier Ltd. All rights reserved.

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